Explorative prediction of novel superhard carbon allotropes with lager cell: Density functional theory-assisted deep learning

被引:2
作者
Yang, Jiangtao [1 ]
Fan, Qingyang [1 ,2 ]
Ye, Ming [1 ]
Liu, Heng [1 ]
机构
[1] Xian Univ Architecture & Technol, Coll Informat & Control Engn, Xian 710055, Peoples R China
[2] Shaanxi Key Lab Nano Mat & Technol, Xian 710055, Peoples R China
基金
中国博士后科学基金; 中国国家自然科学基金;
关键词
Density functional theory (DFT); Crystal convolutional residual neural networks; Deep learning; Hardness; BIG DATA; MACHINE; PSEUDOPOTENTIALS; APPROXIMATION; FRAMEWORKS; NITRIDE; DESIGN;
D O I
10.1016/j.diamond.2024.111320
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Searching for superhard materials with excellent properties has been a key challenge in materials science over the past decades. In this study, based on high throughput and density functional theory (DFT), we identified 24 new stable carbon allotropes from 50 initially identified candidates through structural optimization by removing repetitive structures and mechanically, molecularly dynamic, and thermally unstable structures. In addition, we built a crystal convolution residual neural network (CCRNN) to predict the elastic properties and mechanical hardness of the carbon allotropes and used chemical formulas as inputs to the model. The model used nearly 9979 target compounds, monomers, and 143 element-based features such as covalent radius, electronegativity, volume, and magnetic moment. To accurately predict carbon allotropes, we added lattice constants (a,b,c) and lattice angles (alpha,beta,gamma) as inputs after the feature descriptors. Random forest (RF) and gradientboosted decision tree (GBDT) regression algorithms were constructed, and the r of the CCRNN model was 0.978 and 0.955 for the bulk and shear moduli, respectively, and the best model (CCRNN) was chosen to predict the bulk and shear moduli of the stabilized carbon allotropes obtained from high-throughput calculations. Density functional theory validated the machine learning results. This study not only revealed 7 new superhard carbon allotropes, but also proposed a new deep learning model, and these newly discovered superhard carbon allotropes had wide-ranging potential applications in the fields of industry, electronics, aerospace, geology, and biomedicine. Our research has provided an important theoretical and experimental basis for the development of new superhard materials and applications and was significant in advancing the field of materials science and engineering.
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页数:10
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共 77 条
  • [71] An orthorhombic carbon allotrope with a quasi-direct band gap and superhard
    Xing, Mengjiang
    Li, Xiaozhen
    [J]. DIAMOND AND RELATED MATERIALS, 2023, 131
  • [72] The Physical Properties of a Novel Carbon Allotrope in Tetragonal Symmetry
    Xing, Mengjiang
    Li, Xiaozhen
    [J]. JOURNAL OF ELECTRONIC MATERIALS, 2023, 52 (03) : 2071 - 2079
  • [73] A new tetragonal superhard carbon allotrope with unusual stress-strain behavior
    Zhang, Qian
    Pang, Zhibo
    Li, Yi
    Cheng, Yifan
    Liu, Mingsheng
    Xiong, Mei
    Jia, Shaopei
    Li, Qisong
    Gao, Yufei
    Mu, Yunchao
    Huang, Quan
    [J]. SOLID STATE COMMUNICATIONS, 2023, 366
  • [74] High-throughput screening for superhard carbon and boron nitride allotropes with superior stiffness and strength
    Zhang, Shihao
    Legut, Dominik
    Fu, Zhongheng
    Germann, Timothy C.
    Zhang, Ruifeng
    [J]. CARBON, 2018, 137 : 156 - 164
  • [75] Exploration and investigation of stable novel Al2O3 by high-throughput screening and density functional theory
    Zhao, Ruida
    Fan, Qingyang
    Yang, Runling
    Song, Yanxing
    Yu, Xinhai
    Yun, Sining
    [J]. JOURNAL OF MATERIALS RESEARCH AND TECHNOLOGY-JMR&T, 2023, 23 : 4244 - 4257
  • [76] Big Data Creates New Opportunities for Materials Research: A Review on Methods and Applications of Machine Learning for Materials Design
    Zhou, Teng
    Song, Zhen
    Sundmacher, Kai
    [J]. ENGINEERING, 2019, 5 (06) : 1017 - 1026
  • [77] Predicting the Band Gaps of Inorganic Solids by Machine Learning
    Zhuo, Ya
    Tehrani, Aria Mansouri
    Brgoch, Jakoah
    [J]. JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2018, 9 (07): : 1668 - 1673